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首页> 外文期刊>Journal of applied statistics >Clustering of longitudinal interval-valued data via mixture distribution under covariance separability
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Clustering of longitudinal interval-valued data via mixture distribution under covariance separability

机译:通过协方差可分离分配的混合分布聚类纵向间隔数据

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We consider the clustering of repeatedly measured 'min-max' type interval-valued data. We read the data as matrix variate data and assume the covariance matrix is separable for the model-based clustering (M-clustering). The use of a separable covariance matrix introduces several advantages in M-clustering, which include fewer samples required for a valid procedure. In addition, the numerical study shows that this structured matrix allows us to find the correct number of clusters more accurately compared to other commonly assumed covariance matrices. We apply the M-clustering with various covariance structures to clustering the longitudinal blood pressure data from the National Heart, Lung, and Blood Institute Growth and Health Study (NGHS).
机译:我们考虑反复测量的“MIN-MAX”型间隔值数据的聚类。我们读取数据作为矩阵变动数据,并且假设协方差矩阵可用于基于模型的群集(M群集)。使用可分协方差矩阵的使用在m群中引入了几个优点,其中包括有效步骤所需的样本较少。此外,数值研究表明,与其他常见的协方差矩阵相比,这种结构矩阵允许我们更准确地找到正确数量的簇。我们用各种协方差结构应用M-Clustering,以将来自国家心脏,肺和血液研究所的生长和健康研究(NGHS)的纵向血压数据进行聚类。

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